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Supervised Subspace Learning with Multi-class Lagrangian SVM on the Grassmann Manifold

机译:在Grassmann歧管上的多级拉格朗日SVM监督子空间学习

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Learning robust subspaces to maximize class discrimination is challenging, and most current works consider a weak connection between dimensionality reduction and classifier design. We propose an alternate framework wherein these two steps are combined in a joint formulation to exploit the direct connection between dimensionality reduction and classification. Specifically, we learn an optimal subspace on the Grassmann manifold jointly minimizing the classification error of an SVM classifier. We minimize the regularized empirical risk over both the hypothesis space of functions that underlies this new generalized multi-class Lagrangian SVM and the Grassmann manifold such that a linear projection is to be found. We propose an iterative algorithm to meet the dual goal of optimizing both the classifier and projection. Extensive numerical studies on challenging datasets show robust performance of the proposed scheme over other alternatives in contexts wherein limited training data is used, verifying the advantage of the joint formulation.
机译:学习强大的子空间来最大化课堂歧视是具有挑战性的,并且大多数当前工程考虑维度减少和分类器设计之间的弱连接。我们提出了一种替代框架,其中这两个步骤在关节配方中组合以利用维度降低和分类之间的直接连接。具体而言,我们在基层歧管上学习最佳子空间,共同最小化SVM分类器的分类误差。我们最大限度地减少了对该新型广义多级拉格朗日SVM和基层歧管的函数的假设空间的正常化经验风险,使得要找到线性投影。我们提出了一种迭代算法,以满足优化分类器和投影的双重目标。关于具有挑战性数据集的广泛数值研究显示了在使用有限训练数据的上下文中的其他替代方案的所提出的方案的鲁棒性能,其中验证了关节配方的优点。

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